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Tell2Adapt: A Unified Framework for Source Free Unsupervised Domain Adaptation via Vision Foundation Model

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Source Free Unsupervised Domain Adaptation (SFUDA) is critical for deploying deep learning models across diverse clinical settings. However, existing methods are typically designed for low-gap, specific domain shifts and cannot generalize into a unified, multi-modalities, and multi-target framework, which presents a major barrier to real-world application. To overcome this issue, we introduce Tell2Adapt, a novel SFUDA framework that harnesses the vast, generalizable knowledge of the Vision Foundation Model (VFM). Our approach ensures high-fidelity VFM prompts through Context-Aware Prompts Regularization (CAPR), which robustly translates varied text prompts into canonical instructions. This enables the generation of high-quality pseudo-labels for efficiently adapting the lightweight student model to target domain. To guarantee clinical reliability, the framework incorporates Visual Plausibility Refinement (VPR), which leverages the VFM's anatomical knowledge to re-ground the adapted model's predictions in target image's low-level visual features, effectively removing noise and false positives. We conduct one of the most extensive SFUDA evaluations to date, validating our framework across 10 domain adaptation directions and 22 anatomical targets, including brain, cardiac, polyp, and abdominal targets. Our results demonstrate that Tell2Adapt consistently outperforms existing approaches, achieving SOTA for a unified SFUDA framework in medical image segmentation. Code are avaliable at https://github.com/derekshiii/Tell2Adapt.

Yulong Shi, Shijie Li, Ziyi Li, Lin Qi• 2026

Related benchmarks

TaskDatasetResultRank
Polyp SegmentationKvasir (test)
Dice Coefficient88.3
82
Polyp SegmentationKvasir-SEG CVC-ClinicDB (test)
Dice89.1
23
Cardiac structure segmentationCardiac adaptation MR -> US (test)
DICE (LV)94.6
9
Brain Tumor SegmentationBraTS T1c→T2f
Dice Score (TC)42.2
9
Brain Tumor SegmentationBraTS T2f→T1c
Dice TC72.8
9
Cardiac structure segmentationCardiac adaptation US -> MR (test)
DICE (LV)95.5
9
Brain Tumor SegmentationBraTS T1n→T2w
DICE TC41.6
9
Brain Tumor SegmentationBraTS T2w→T1n
Dice TC41.7
9
Abdominal SegmentationAMOS MR → CT
Liver2.8
9
Abdominal SegmentationAMOS CT → MR
Liver1.9
9
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